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Stacked Sparse Autoencoder (SSAE) for Nuclei Detection on Breast Cancer Histopathology Images

机译:堆叠式稀疏自动编码器(SSAE)用于乳腺癌组织病理学图像的核检测

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Automated nuclear detection is a critical step for a number of computer assisted pathology related image analysis algorithms such as for automated grading of breast cancer tissue specimens. The Nottingham Histologic Score system is highly correlated with the shape and appearance of breast cancer nuclei in histopathological images. However, automated nucleus detection is complicated by 1) the large number of nuclei and the size of high resolution digitized pathology images, and 2) the variability in size, shape, appearance, and texture of the individual nuclei. Recently there has been interest in the application of “Deep Learning” strategies for classification and analysis of big image data. Histopathology, given its size and complexity, represents an excellent use case for application of deep learning strategies. In this paper, a Stacked Sparse Autoencoder (SSAE), an instance of a deep learning strategy, is presented for efficient nuclei detection on high-resolution histopathological images of breast cancer. The SSAE learns high-level features from just pixel intensities alone in order to identify distinguishing features of nuclei. A sliding window operation is applied to each image in order to represent image patches via high-level features obtained via the auto-encoder, which are then subsequently fed to a classifier which categorizes each image patch as nuclear or non-nuclear. Across a cohort of 500 histopathological images (2200 2200) and approximately 3500 manually segmented individual nuclei serving as the groundtruth, SSAE was shown to have an improved F-measure 84.49% and an average area under Precision-Recall curve (AveP) 78.83%. The SSAE approach also out-performed nine other state of the art nuclear detection strategies.
机译:对于许多计算机辅助病理相关的图像分析算法,例如对乳腺癌组织标本进行自动分级,自动核检测是至关重要的一步。诺丁汉组织学评分系统与组织病理学图像中乳腺癌细胞核的形状和外观高度相关。但是,自动核检测的复杂性是:1)大量核和高分辨率数字化病理图像的大小,以及2)单个核的大小,形状,外观和纹理的可变性。最近,人们开始关注“深度学习”策略在大图像数据分类和分析中的应用。鉴于其规模和复杂性,组织病理学代表了深度学习策略应用的绝佳用例。在本文中,提出了一种堆栈式稀疏自动编码器(SSAE),它是深度学习策略的一个实例,可用于对高分辨率的乳腺癌组织病理学图像进行有效的核检测。 SSAE仅从像素强度中学习高级特征,以识别原子核的显着特征。滑动窗口操作应用于每个图像,以便通过自动编码器获得的高级特征表示图像斑块,然后将这些特征块提供给分类器,该分类器将每个图像斑块归类为核或非核。在500个组织病理学图像(2200 2200)和约3500个手动分割的单个核作为底质的队列中,SSAE被证明具有改进的F值84.49%,在精确召回曲线(AveP)下的平均面积为78.83%。 SSAE方法还胜过其他九种最先进的核探测策略。

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